TDWI Data Modeling: Data Analysis and Design for BI and Data Warehousing Systems Training in Finland

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 2 Days
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

Business intelligence and data warehousing systems challenge the proven data modeling techniques of the past. From requirements to implementation, new roles, uses, and kinds of data demand updated modeling skills. The data modeler’s toolbox must address relational data, dimensional data, unstructured data, and master data. For those with data modeling experience, this course extends their skills to meet today’s modeling challenges. Those new to data modeling are introduced to the broad range of modeling skills needed for BI/DW systems. Those who need to understand data models, but not necessarily develop them, will learn about the various forms of models and what they are intended to communicate.

This course assumes basic understanding of data warehousing fundamentals.

Data architects; data modelers; BI program and project managers; BI/DW system developers

  • Differences in modeling techniques for business transactions, business events, and business metrics
  • Different types of data and their implications
  • Application of business context to modeling activities
  • The role of business requirements in BI data modeling
  • The role of source data analysis in data modeling
  • Use of normalized modeling techniques for data warehouse analysis and design
  • Use of dimensional modeling techniques for data warehouse analysis and design
  • The roles of generalization and abstraction in data warehouse design
  • The roles of identity and hierarchy management in data warehouse design
  • How time-variant data is represented in data models
  • Implementation and optimization considerations for warehousing data stores

Module One: Data Modeling Concepts

The Data Modeling Life Cycle 

  • Where Data Modeling Begins And Ends
  • Between Business Needs And Implemented Data

Kinds Of Data Systems

  • Business Uses Of Data

Data Taxonomies

  • Data Properties
  • Data Characteristics

Data Modeling Framework For BI

  • Where And What To Model


Module Two: Business Data Models

Business Context

  • Business Drivers, Goals, And Strategies
  • Business Information Needs
  • Business Domains
  • Business Subjects

Business Data Model Development

  • Top-Down – Incremental And Iterative

Gathering Business Questions

  • The Modeling Process
  • Working With The Business
  • An Example

Analyzing Business Questions

  • The Modeling Process
  • Mapping Facts And Qualifiers – Finding The Facts
  • Mapping Facts And Qualifiers – Fact/Qualifier Associations
  • An Example

Fact Analysis And Refinement

  • Removing Redundancy
  • An Example

Qualifier Analysis And Refinement

  • Finding Hierarchies
  • An Example

Business Dimensional Modeling

  • The Modeling Process
  • An Example


Module Three: Logical Data Models

What To Model

  • The Data And Information Pipeline

Understanding Data Structures

  • Why Sources Matter
  • Extracting Source Data Structure
  • Source Data Profiling

Logical Relational Modeling

  • The Modeling Process
  • Logical Models For Data Warehouse And Ods
  • A Data Warehouse Example
  • Logical Models For Marts And Reporting

Logical Dimensional Modeling

  • Data Structure Of Business Metrics
  • The Modeling Process
  • Modeling Meters And Measures
  • Adding The Dimensions
  • Refining And Enriching The Dimensions
  • Declaring The Grain
  • Refining And Enriching The Measures

Logical Models And Business Metrics

  • Creating A Catalog Of Metrics
  • Classifying Metrics
  • An Example

Logical Models And Business Analytics

  • Analytics Applications
  • Data Mining Applications

Logical Models And Master Data Management

  • Identity Management
  • Hierarchy Management

Logical Models And Unstructured Data

  • Unstructured Data And Content Management
  • Unstructured Data And Text Analytics
  • Big Data


Module Four: Implementation Data Models

Data Structure In Transaction Systems

  • Extracting The Structure Of Existing Data

Structural Modeling And Data Integration

  • From Business Models To Technology Models
  • Normalization
  • The Normalization Process
  • A Normalization Example
  • Time-Variant Data Structures
  • A Snapshot Example
  • An Audit Trail Example
  • An Example Of States
  • Access, Navigation, Security, And Distribution
  • Access And Navigation Examples
  • Security And Distribution Examples

Structural Modeling And Business Analytics

  • From Metrics Models To Technology Models
  • Star-Schema Design
  • Star-Schema Design Process
  • Star-Schema Design - Modeling Dimension Tables
  • Star-Schema Design - Dimension Table Key
  • Star-Schema Design – Considering The Facts
  • Star-Schema Design – Fact Table Key
  • Analytic Application And Data Structures
  • Data Mining Data Structures

Physical Design Overview

  • The Results Of Physical Design And Implementation

Some Optimization Techniques

  • Derivation
  • Aggregation
  • Summarization
  • Horizontal Partitioning
  • Vertical Partitioning
  • Optimization Summary

Physical Design And Implementation

  • Implementing Relational Data
  • Implementing Business Analytics
  • Implementing Olap

Module Five: Summary And Conclusion

Appendices

  • Appendix A - Entity-Relationship Modeling Basics
  • Relational Data Design
  • Introduction To Entity/Relationship Modeling
  • E/R Model Components
  • Entities And Attributes
  • Relationships
  • Subtypes And Supertypes
  • Reading E/R Models: E/R Models For Communication

Appendix B – Case Study

Appendix C – Exercises

  • Exercise One – Business Domains
  • Exercise Two – Business Subjects
  • Exercise Three – Fact Qualifier Matrix
  • Exercise Four – Fact Qualifier Matrix Refinement
  • Exercise Five – Logical Dimensional Model
  • Exercise Six – Star Schema


Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our Finland facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

Classroom / Virtual Classroom
01 heinäkuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
04 heinäkuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
13 heinäkuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
21 heinäkuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
05 elokuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
08 elokuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
16 elokuuta 2024
Helsinki, Espoo
2 Days
Classroom / Virtual Classroom
15 elokuuta 2024
Helsinki, Espoo
2 Days
TDWI Data Modeling: Data Analysis and Design for BI and Data Warehousing Systems Training Course in Finland

Finland is a country located in northern Europe. Helsinki is the capital and largest city of the country. The majority of the people are Finns but there is also a small Lapp population in Lapland, where the country is famous for the Northern Lights. Finland's national languages are Finnish and Swedish.

Known for its vast forests, lakes, and natural beauty, Finland is one of the world's largest producers of forest products, such as paper, pulp, and lumber. One of the world's largest sea fortresses Suomenlinna, Rovaniemi with the "White Nights", dogsled safaris and of course the Northern Lights are what makes Finland so popular for tourists. Finland is one of the best places in the world to see the Northern Lights and attracts millions of tourists during its seasons.

Finland is home to a thriving technology industry and is widely recognized as one of the world's leading technology hubs. Companies such as Nokia and Rovio (creator of the popular game Angry Birds) are based in Finland. Some of the key factors that have contributed to Finland's success in technology include; strong investment in research and development, a highly educated workforce and fundings.

Finland has a strong educational system, and is widely regarded as one of the world's most literate countries. In fact, Finland's literacy rate is one of the highest in the world, and its students consistently perform well in international tests of math and reading ability.

Also, as a pioneer in environmental sustainability, Finland is known for its efforts to reduce its carbon footprint and promote clean energy. This Nordic country is also famous for its unique and distinctive cultural heritage, including its traditional folk music and its elaborate traditional costumes.

Helsinki, Finland's capital city, is the country's business center. Helsinki is Finland's largest city, and it is home to many of the country's major corporations and organizations, including many of the country's leading technology firms. The city is also a commercial, trade, and financial center, as well as one of the busiest ports in the Nordic region.

Take advantage of our diverse IT course offerings, spanning programming, software development, business skills, data science, cybersecurity, cloud computing and virtualization. Our knowledgeable instructors will provide you with practical training and industry insights, delivered directly to your chosen venue in Finland.
By using this website you agree to let us use cookies. For further information about our use of cookies, check out our Cookie Policy.